Observational studies can play a useful role in assessing the comparative effectiveness of competing treatments. In a clinical trial the randomization of participants to treatment and control groups generally results in well-balanced groups with respect to possible confounders, which makes the analysis straightforward. However, when analysing observational data, the potential for unmeasured confounding makes comparing treatment effects much more challenging. Causal inference methods such as Instrumental Variable and Prior Even Rate Ratio approaches make it possible to circumvent the need to adjust for confounding factors that have not been measured in the data or measured with error. Direct confounder adjustment via multivariable regression...
There are several examples in the medical literature where the associations of treatment effects pre...
Observational studies of newly marketed medications can add important safety and effectiveness infor...
BACKGROUND AND OBJECTIVE: To review methods that seek to adjust for confounding in observational stu...
Instrumental variable analysis is an increasingly popular method in comparative effectiveness resear...
ABSTRACTObjectivesThe goal of comparative effectiveness analysis is to examine the relationship betw...
Many studies in biostatistics are concerned with comparing two groups of patients, a treatment and a...
Background: Recently, there has been a heightened interest in developing and evaluating different me...
Background: Recently, there has been a heightened interest in developing and evaluating different me...
Many studies in biostatistics are concerned with comparing two groups of patients, a treatment and a...
Introduction: Because a comparison of noninitiators and initiators of treatment may be hopelessly co...
With increasing data availability, treatment causal effects can be evaluated across different datase...
OBJECTIVES: The goal of comparative effectiveness analysis is to examine the relationship between tw...
In health services research, it is vital to know whether an event, such as treatment or modifiable e...
Covariate adjustment is integral to the validity of observational studies assessing causal effects. ...
The primary scientific goal of a randomized clinical trial of two treatments, A and B, is to compare...
There are several examples in the medical literature where the associations of treatment effects pre...
Observational studies of newly marketed medications can add important safety and effectiveness infor...
BACKGROUND AND OBJECTIVE: To review methods that seek to adjust for confounding in observational stu...
Instrumental variable analysis is an increasingly popular method in comparative effectiveness resear...
ABSTRACTObjectivesThe goal of comparative effectiveness analysis is to examine the relationship betw...
Many studies in biostatistics are concerned with comparing two groups of patients, a treatment and a...
Background: Recently, there has been a heightened interest in developing and evaluating different me...
Background: Recently, there has been a heightened interest in developing and evaluating different me...
Many studies in biostatistics are concerned with comparing two groups of patients, a treatment and a...
Introduction: Because a comparison of noninitiators and initiators of treatment may be hopelessly co...
With increasing data availability, treatment causal effects can be evaluated across different datase...
OBJECTIVES: The goal of comparative effectiveness analysis is to examine the relationship between tw...
In health services research, it is vital to know whether an event, such as treatment or modifiable e...
Covariate adjustment is integral to the validity of observational studies assessing causal effects. ...
The primary scientific goal of a randomized clinical trial of two treatments, A and B, is to compare...
There are several examples in the medical literature where the associations of treatment effects pre...
Observational studies of newly marketed medications can add important safety and effectiveness infor...
BACKGROUND AND OBJECTIVE: To review methods that seek to adjust for confounding in observational stu...